import streamlit as st from utils.uploadAndExample import add_upload from utils.config import model_dict from utils.vulnerability_classifier import label_dict import appStore.doc_processing as processing import appStore.vulnerability_analysis as vulnerability_analysis import appStore.target as target_analysis with st.sidebar: # upload and example doc choice = st.sidebar.radio(label = 'Select the Document', help = 'You can upload the document \ or else you can try a example document', options = ('Upload Document', 'Try Example'), horizontal = True) add_upload(choice) # Create a list of options for the dropdown model_options = ['Llama3.1-8B','Llama3.1-70B','Llama3.1-405B','Zephyr 7B β','Mistral-7B','Mixtral-8x7B'] # Dropdown selectbox: model model_sel = st.selectbox('Select a model:', model_options) model_sel_name = model_dict[model_sel] st.session_state['model_sel_name'] = model_sel_name with st.container(): st.markdown("

Vulnerability Analysis 3.1

", unsafe_allow_html=True) st.write(' ') with st.expander("ℹ️ - About this app", expanded=False): st.write( """ The Vulnerability Analysis App is an open-source\ digital tool which aims to assist policy analysts and \ other users in extracting and filtering references \ to different groups in vulnerable situations from public documents. \ We use Natural Language Processing (NLP), specifically deep \ learning-based text representations to search context-sensitively \ for mentions of the special needs of groups in vulnerable situations to cluster them thematically. For more understanding on Methodology [Click Here](https://vulnerability-analysis.streamlit.app/) """) st.write(""" What Happens in background? - Step 1: Once the document is provided to app, it undergoes *Pre-processing*.\ In this step the document is broken into smaller paragraphs \ (based on word/sentence count). - Step 2: The paragraphs are then fed to the **Vulnerability Classifier** which detects if the paragraph contains any or multiple references to vulnerable groups. """) st.write("")